Lead Data Scientist

Atlanta, Georgia
US$140000 - US$160000 per annum + Bonus + Benefits

Lead Data Scientist
Atlanta, Georgia
$140,000-160,000 base salary + bonus + benefits

Harnham are partnered with one of the top manufacturing companies in the world. They are looking for a tech lead with extensive commercial experience building data science business solutions. This person will sit in their Global Data Science team and have impact across the business.

THE ROLE

  • You will analyze data across the business (finance, supply chain, marketing, etc.) with machine learning techniques to develop better tools to optimize and automate processes
  • You will report directly into the Director of Data Science and work closely on technical direction
  • You will implement and design code and build out to production using various advanced statistical techniques with access to petabytes of data
  • Work closely across the commercial side of the business building models from concept to production
  • You will be responsible for mentoring/managing a fast-growing team

YOUR SKILLS AND EXPERIENCE

The successful Lead Data Scientist will likely have the following skills and experience:

  • Heavy experience using Python for predictive modeling and data manipulation
  • Commercial experience building machine learning (supervised/unsupervised) models in business-facing setting
  • Prior experience leading projects necessary
  • History of using various datasets
  • Experience with analyzing large-scale datasets a plus
  • Spark experience required; Azure preferred, but open to familiarity with AWS or GCP
  • PhD/MS in Computer Science, Statistics, Electrical Engineering or other STEM related field
  • Machine Learning expertise required; Deep Learning or Natural Language Processing experience a plus

THE BENEFITS

A competitive base salary of $140,000-160,000 + bonus + benefits


HOW TO APPLY

Please register your interest by sending your résumé to Tim Jonas via the Apply link on this page.


KEYWORDS

Machine Learning | Data Science | Manufacturing | Real World Applications | Tech Leadership | Global | Python | Stakeholder Management | Project Leadership

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109186 VACTJ
Atlanta, Georgia
US$140000 - US$160000 per annum + Bonus + Benefits
  1. Permanent
  2. Data science

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